Sarcopenia Diagnostic Technique Based on Artificial Intelligence Using Bio-signal of Neuromuscular System: A Proof-of-Concept Study.

Brain & NeuroRehabilitation Pub Date : 2024-06-17 eCollection Date: 2024-07-01 DOI:10.12786/bn.2024.17.e12
Kwangsub Song, Hae-Yeon Park, Sangui Choi, Seungyup Song, Hanee Rim, Mi-Jeong Yoon, Yeun Jie Yoo, Hooman Lee, Sun Im
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Abstract

In this paper, we propose an artificial intelligence (AI)-based sarcopenia diagnostic technique for stroke patients utilizing bio-signals from the neuromuscular system. Handgrip, skeletal muscle mass index, and gait speed are prerequisite components for sarcopenia diagnoses. However, measurement of these parameters is often challenging for most hemiplegic stroke patients. For these reasons, there is an imperative need to develop a sarcopenia diagnostic technique that requires minimal volitional participation but nevertheless still assesses the muscle changes related to sarcopenia. The proposed AI diagnostic technique collects motor unit responses from stroke patients in a resting state via stimulated muscle contraction signals (SMCSs) recorded from surface electromyography while applying electrical stimulation to the muscle. For this study, we extracted features from SMCS collected from stroke patients and trained our AI model for sarcopenia diagnosis. We validated the performance of the trained AI models for each gender against other diagnostic parameters. The accuracy of the AI sarcopenia model was 96%, and 95% for male and females, respectively. Through these results, we were able to provide preliminary proof that SMCS could be a potential surrogate biomarker to reflect sarcopenia in stroke patients.

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基于人工智能、利用神经肌肉系统生物信号的 "肌肉疏松症 "诊断技术:概念验证研究
在本文中,我们提出了一种基于人工智能(AI)的肌肉疏松症诊断技术,利用来自神经肌肉系统的生物信号对中风患者进行诊断。手握力、骨骼肌质量指数和步速是诊断肌肉疏松症的先决条件。然而,对于大多数中风偏瘫患者来说,测量这些参数往往具有挑战性。因此,亟需开发一种肌肉疏松症诊断技术,这种技术只需最低限度的自愿参与,但仍能评估与肌肉疏松症相关的肌肉变化。拟议的人工智能诊断技术通过对肌肉施加电刺激时从表面肌电图记录的受刺激肌肉收缩信号(SMCS),收集中风患者在静息状态下的运动单元反应。在这项研究中,我们从中风患者的肌肉收缩信号中提取了特征,并训练了用于肌少症诊断的人工智能模型。我们根据其他诊断参数验证了每个性别的训练有素的人工智能模型的性能。人工智能肌肉疏松症模型的准确率为 96%,男性和女性分别为 95%。通过这些结果,我们能够初步证明 SMCS 可能是反映中风患者肌肉疏松症的替代生物标志物。
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Reliability of Surface Electromyography From the Lower-limb Muscles During Maximal and Submaximal Voluntary Isometric Contractions in In-bed Healthy Individuals and Patients With Subacute Stroke. Is the Korean Mini-Mental State Examination (K-MMSE) Useful in Evaluating the Cognitive Function of Brain Injury Patients?: Through Correlation Analysis With Computerized Neurocognitive Test (CNT). Cerebrolysin Concentrate: Therapeutic Potential for Severe Oral Apraxia After Stroke: A Case Report. Sarcopenia Diagnostic Technique Based on Artificial Intelligence Using Bio-signal of Neuromuscular System: A Proof-of-Concept Study. Feasibility of Sarcopenia Diagnosis Using Stimulated Muscle Contraction Signal in Hemiplegic Stroke Patients.
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